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An optimization-based approach to scheduling residential battery storage with solar PV: Assessing customer benefit

机译:基于优化的太阳能光伏家用电池存储调度方法:评估客户利益

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Several studies have suggested that battery storage co-located with solar photovoltaics (PV) benefits electricity distributors in maintaining system voltages within acceptable limits. However, without careful coordination, these potential benefits might not be realized. In this paper we propose an optimization-based algorithm for the scheduling of residential battery storage co-located with solar PV, in the context of PV incentives such as feed-in tariffs. Our objective is to maximize the daily operational savings that accrue to customers, while penalizing large voltage swings stemming from reverse power flow and peak load. To achieve this objective we present a quadratic program (QP)-based algorithm. To complete our assessment of the customer benefit, the QP-based scheduling algorithm is applied to measured load and generation data from 145 residential customers located in an Australian distribution network. The results of this case study confirm the QP-based scheduling algorithm significantly penalizes reverse power flow and peak loads corresponding to peak time-of-use billing. In the context of feed-in tariffs, the majority of customers exhibited operational savings when QP energy-shifting. Crown Copyright (C) 2014 Published by Elsevier Ltd. All rights reserved.
机译:多项研究表明,与太阳能光伏(PV)并置的电池存储可以使配电商将系统电压保持在可接受的范围内,从而使配电商受益。但是,如果没有仔细的协调,这些潜在的好处可能无法实现。在本文中,我们提出了一种基于优化的算法,用于在光伏激励措施(例如上网电价)的背景下与太阳能光伏发电并置的住宅电池存储调度。我们的目标是最大程度地节省客户的日常运营支出,同时惩罚由于反向电流和峰值负载而产生的大电压摆幅。为了实现此目标,我们提出了一种基于二次程序(QP)的算法。为了完成我们对客户利益的评估,基于QP的调度算法被应用于来自澳大利亚分销网络中145个住宅客户的测得负荷和发电数据。该案例研究的结果证实,基于QP的调度算法显着惩罚了反向功率流和与峰值使用时间计费相对应的峰值负载。在上网电价的背景下,大多数客户在QP能源转移时表现出可节省的运营成本。 Crown版权所有(C)2014,由Elsevier Ltd.发行。保留所有权利。

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